Method, a processor, and a system for identifying a substance

ABSTRACT

A method, a processor, and a system for identifying a substance are described. The method includes identifying a substance based on a plurality of integrated intensities of a plurality of X-ray diffraction profiles.

FIELD OF THE INVENTION

The field of the invention relates generally to a method, a processor, and a system for identifying a substance and, more particularly, to a method, a processor, and a system for determining a parameter of the substance to identify the substance.

BACKGROUND OF THE INVENTION

The events of Sep. 11, 2001 instigated an urgency for more effective and stringent screening of airport baggage. The urgency for security expanded from an inspection of carry-on bags for knives and guns to a complete inspection of checked bags for a range of hazards with particular emphasis upon concealed explosives. X-ray imaging is a widespread technology currently employed for screening.

Identification systems based on X-ray diffraction (XRD) techniques provide an improved discrimination of the materials compared to that provided by the X-ray baggage scanners. The XRD identification systems measure d-spacings between lattice planes of micro-crystals in the materials. A “d-spacing” is a perpendicular distance between adjacent lattice planes in any of the materials.

However, the XRD identification systems for explosives detection and baggage scanning are not yet highly developed. Moreover, the diffraction techniques suffer from a false alarm problem for some classes of substances. There are certain types of explosives in which an explosive component cannot be identified by the XRD identification systems and the lack of identification leads to a high false alarm rate.

BRIEF DESCRIPTION OF THE INVENTION

A brief description of embodiments of a method, a processor, and a system for identifying a substance follows.

In one aspect, a method for identifying a substance is described. The method includes identifying a substance based on a plurality of integrated intensities of a plurality of X-ray diffraction profiles.

In another aspect, a processor for identifying a substance is described. The processor is configured to identify a substance based on a plurality of integrated intensities of a plurality of X-ray diffraction profiles.

In yet another aspect, a system for identifying a substance, said system comprising is described. The system includes an X-ray source configured to generate X-rays, a detector configured to output a plurality of electrical signals upon detecting the X-rays, and a processor configured to identify the substance based on a plurality of integrated intensities of a plurality of X-ray diffraction profiles. The X-ray diffraction profiles are generated based on the electrical signals.

BRIEF DESCRIPTION OF THE DRAWINGS

FIGS. 1-18 show embodiments of a method, a processor, and a system for identifying a substance.

FIG. 1 is an isometric view of an embodiment of a system for identifying a substance.

FIG. 2 is block diagram of an embodiment of a system for identifying a substance.

FIG. 3 is a block diagram of an embodiment of a system for identifying a substance.

FIG. 4 is a block diagram of an embodiment of a system for generating an X-ray image.

FIG. 5 is an isometric view of an alternative embodiment of a system for identifying a substance.

FIG. 6 is a flowchart of an embodiment of a method for identifying a substance.

FIG. 7 is a continuation of the flowchart of FIG. 6.

FIG. 8 is a continuation of the flowchart of FIG. 7.

FIG. 9 is a continuation of the flowchart of FIG. 8.

FIG. 10 is a continuation of the flowchart of FIG. 7.

FIG. 11 is a continuation of the flowchart of FIG. 10.

FIG. 12 is a continuation of the flowchart of FIG. 11.

FIG. 13 shows an embodiment of a diffraction profile of a substance used within the system of FIG. 1 and an embodiment of a diffraction profile of a calibration substance.

FIG. 14 shows an embodiment of a logarithmic diffraction profile of gasoline.

FIG. 15 shows an embodiment of a logarithmic diffraction profile of sulphuric acid.

FIG. 16 is a continuation of the flowchart of FIG. 9.

FIG. 17 is a continuation of the flowchart of FIG. 16.

FIG. 18 is a continuation of the flowchart of FIG. 17.

DETAILED DESCRIPTION OF THE INVENTION

While described in terms of detecting contraband including, without limitation, weapons, explosives, and/or narcotics, within baggage, the embodiments described herein can be used for any suitable diffraction imaging application.

FIG. 1 is an isometric view of an embodiment of a system 10 for identifying a substance. System 10 includes a gantry 12. Gantry 12 includes a primary collimator 14, which is a multi-focus primary collimator, a scatter detector 16, a transmission detector 17, a scatter detector 18, and a secondary collimator 76. In an alternative embodiment, a single-focus primary collimator is used instead of primary collimator 14. Each scatter detector 16 and 18 is a segmented semiconductor detector.

Transmission detector 17 includes a plurality of detector elements, such as detector elements 20 and 21. Scatter detector 18 includes a plurality of detector cells or detector elements 22, 24, 26, 28, 30, 32, 34, and 36 for detecting coherent scatter. Scatter detector 16 includes a plurality of detector cells or detector elements 40, 42, 44, 46, 48, 50, 52, and 54 for detecting coherent scatter. Each scatter detector 16 and 18 includes any suitable number of detector elements, such as, ranging from and including 5 to 1200 detector elements. For example, scatter detector 18 includes 5 detector elements in a z-direction parallel to a z-axis, and one detector element in a y-direction parallel to a y-axis. As another example, scatter detector 18 includes 20 detector elements in the z-direction, and 20 detector elements in the y-direction. As yet another example, scatter detector 18 includes 40 detector elements in the z-direction, and 30 detector elements in the y-direction. An x-axis, the y-axis, and the z-axis are located within an xyz co-ordinate system having an origin. The x-axis is perpendicular to the y-axis and the z-axis, the y-axis is perpendicular to the z-axis, and the x-axis is parallel to an x-direction. A number of detector elements within scatter detector 16 may be equal to a number of detector elements within scatter detector 18.

Scatter detector 16 is separate from scatter detector 18. For example, scatter detector 16 has a housing that is separate from a housing of scatter detector 18. As another example scatter detectors 16 and 18 are separated from each other by a gap. As yet another example, a shortest distance 56 between a center of scatter detector 16 and a center of scatter detector 18 ranges from and including 40 millimeters (mm) to 200 mm. As another example, shortest distance 56 between a center of scatter detector 16 and a center of scatter detector 18 is 45 mm. As yet another example, shortest distance 56 between a center of scatter detector 16 and a center of scatter detector 18 is 125 mm. As still another example, shortest distance 56 between a center of scatter detector 16 and a center of scatter detector 18 is 195 mm. Scatter detector 16, scatter detector 18, and transmission detector 17 may be located in the same yz plane. The yz plane is formed by the y-axis and the z-axis. Each scatter detector 16 and scatter detector 18 is separated from transmission detector 17 by a shortest distance ranging from and including 30 mm to 60 mm in the z-direction. As an example, each scatter detector 16 and scatter detector 18 is separated from transmission detector 17 by a shortest distance of 35 mm in the z-direction. As another example, each scatter detector 16 and scatter detector 18 is separated from transmission detector 17 by a shortest distance of 50 mm in the z-direction. As yet another example, each scatter detector 16 and scatter detector 18 is separated from transmission detector 17 by a shortest distance of 60 mm in the z-direction.

Gantry 12 further includes a plurality of X-ray sources 64, 66, and 68. In an alternative embodiment, gantry 12 includes any number, such as one, two, four, five, or ten X-ray sources. X-ray sources 64, 66, and 68, and transmission detector 17 form an inverse single-pass multi-focus imaging system. X-ray sources 64, 66, and 68 have an inverse fan-beam geometry that includes a symmetric location of the X-ray sources 64, 66, and 68 relative to the z-axis. X-ray sources 64, 66, and 68, are located parallel to and coincident with an arc 75. It is noted that in an alternative embodiment, system 10 includes a higher number, such as 10 or 20, or alternatively a lower number, such as 4 or 6, X-ray sources than that shown in FIG. 1. A center of transmission detector 17 is located at a center of a circle having arc 75. Each X-ray source 64, 66, and 68 is an X-ray source that includes a cathode and an anode. Alternatively, each X-ray source 64, 66, and 68 is an X-ray source that includes a cathode and all X-ray sources 64, 66, and 68 share a common anode.

A container 79 is placed on a support 80 between a set of X-ray sources 64, 66, and 68, and a set of scatter detectors 16 and 18. Container 79 and support 80 are located within an opening 65 of gantry 12. Examples of container 79 include a bag, a box, and an air cargo container. Examples of each X-ray source 64, 66, and 68 include a polychromatic X-ray source. Container 79 includes a substance 82. Examples of substance 82 include an organic explosive, an amorphous substance having a crystallinity of less than twenty five percent, a quasi-amorphous substance having a crystallinity at least equal to twenty-five percent and less than fifty percent, a partially crystalline substance having a crystallinity at least equal to fifty percent and less than one-hundred percent, and a crystalline substance having a crystallinity of one-hundred percent. Examples of the amorphous, quasi-amorphous, and partially crystalline substances include a gel explosive, a slurry explosive, an explosive including ammonium nitrate, and a special nuclear material. Examples of the special nuclear material include plutonium and uranium. Examples of support 80 include a table and a conveyor belt. An example of each scatter detector 16 and 18 includes a segmented detector fabricated from Germanium.

X-ray source 66 emits an X-ray beam 67 in an energy range, which is dependent on a voltage applied by a power source to X-ray source 66. Primary collimator 14 generates two primary beams 83 and 84, such as pencil beams, after collimating X-ray beam 67 from X-ray source 66. In an alternative embodiment, primary collimator 14 collimates X-ray beam 67 received from X-ray source 66 to generate a plurality, such as three or four, primary beams. A number of primary beams generated by primary collimator 14 is equal to or alternatively greater than a number of scatter detectors on one side of transmission detector 17 and on one side of the y-axis. Primary beams 83 and 84 pass through a plurality of points 85 and 86 on substance 82 within container 79 arranged on support 80 to generate scattered radiation 88, 89, 90, and 91. For example, primary beam 83 passes through point 85 to generate scattered radiation 88 and 89. As another example, primary beam 84 passes through point 86 to generate scattered radiation 90 and 91.

Secondary collimator 76 is located between support 80 and scatter detectors 16 and 18. Secondary collimator 76 includes a number of collimator elements, such as sheets, slits, or laminations, to ensure that scattered radiation arriving at scatter detectors 16 and 18 have constant scatter angles with respect to primary beams 83 and 84 and that a position of scatter detectors 16 and 18 permits a depth in container 79 at which the scattered radiation originated to be determined. For example, the collimator elements of secondary collimator 76 are arranged parallel to a direction of scattered radiation 88 and of scattered radiation 90 to absorb scattered radiation that is not parallel to the direction of scattered radiation 88 and of scattered radiation 90.

The number of collimator elements in secondary collimator 76 is equal to or alternatively greater than a number of detector elements of scatter detectors 16 and/or 18. The collimator elements are arranged such that scattered radiation between neighboring collimator elements is incident on one of the detector elements. The collimator elements of scatter detectors 16 and 18 are made of a radiation-absorbing material, such as steel, copper, silver, or tungsten.

Transmission detector 17 is positioned underneath support and configured to measure an intensity of primary beam 83 at a point 92 on transmission detector 17 and an intensity of primary beam 84 at a point 93 on transmission detector 17. Moreover, scatter detectors 16 and 18 that measure photon energies of scattered radiation are positioned underneath support 80 and configured to measure photon energies of scattered radiation received by scatter detectors 16 and 18. Each scatter detector 16 and 18 measures the X-ray photons within scattered radiation received by scatter detectors 16 and 18 in an energy-sensitive manner by outputting a plurality of electrical output signals linearly dependent on a plurality of energies of the X-ray photons detected from within the scattered radiation. Scatter detector 16 measures scattered radiation 90 received at a point 94 on scatter detector 16 and scatter detector 18 measures scattered radiation 88 received at a point 95 on scatter detector 18. An example of a shortest distance between points 85 and 95 includes a distance ranging from and including 900 mm to 1100 mm. Another example of a shortest distance between points 85 and 95 includes a distance of 925 mm. Yet another example of a shortest distance between points 85 and 95 includes a distance of 1000 mm. Another example of a shortest distance between points 85 and 95 includes a distance of 1095 mm. An example of a distance between points 95 and 92 includes a distance ranging from and including 25 mm to 80 mm. Yet another example of a distance between points 95 and 92 includes a distance of 30 mm. Another example of a distance between points 95 and 92 includes a distance of 50 mm. Yet another example of a distance between points 95 and 92 includes a distance of 75 mm.

Scatter detectors 16 and 18 detect scattered radiation to generate a plurality of electrical output signals. Scatter detector 16 detects scattered radiation 90 generated upon intersection of primary beam 84 with point 86. Moreover, scatter detector 16 detects at least a portion of scattered radiation 89 generated upon intersection of primary beam 83 with point 85. Scatter detector 18 detects scattered radiation 88 generated upon intersection of primary beam 83 with point 85. Moreover, scatter detector 18 detects at least a portion of scattered radiation 91 generated upon intersection of primary beam 84 with point 86. A scatter angle 96 formed between primary beam 83 and scattered radiation 88 is equal to a scatter angle 97 formed between primary beam 84 and scattered radiation 90. An example of each scatter angle 96 and 97 includes an angle ranging from and including 0.025 radians to 0.045 radians. As another example, each scatter angle 96 and 97 includes an angle of 0.03 radians. As yet another example, each scatter angle 96 and 97 includes an angle of 0.04 radians. As still another example, each scatter angle 96 and 97 includes an angle of 0.045 radians. An example of a scatter angle 98 formed between primary beam 83 and scattered radiation 89 ranges from and including 0.05 radians to 0.09 radians. An example of scatter angle 98 includes 0.05 radians. Another example of scatter angle 98 includes 0.07 radians. Yet another example of scatter angle 98 includes 0.09 radians. Moreover, an example of a scatter angle 105 formed between primary beam 84 and scattered radiation 91 ranges from and including 0.05 radians to 0.09 radians. An example of scatter angle 105 includes 0.05 radians. Another example of scatter angle 105 includes 0.07 radians. Yet another example of scatter angle 105 includes 0.09 radians.

Scatter angle 98 is at least two times greater than scatter angles 96 and/or 97 and scatter angle 105 is at least two times greater than scatter angles 96 and/or 97. An angle 99 formed by primary beam 83 with respect to a center 101 between scatter detectors 16 and 18 is equal to an angle 103 formed by primary beam 84 with respect to center 101.

In an alternative embodiment, system 10 includes additional scatter detectors other than scatter detectors 16 and 18. The additional scatter detectors are placed on a side of transmission detector 17 that includes scatter detectors 16 and 18. Moreover, the additional scatter detectors are the same as scatter detectors 16 and 18. For example, any one of the additional scatter detectors has the same number of detector elements as that of scatter detectors 16 and/or 18. In yet another alternative embodiment, system 10 does not include scatter detector 16.

FIG. 2 is block diagram of an embodiment of a system 100 for identifying a substance. System 100 includes detector element 20 of transmission detector 17, scatter detector elements 22, 24, 26, 28, 30, 32, 34, and 36, a plurality of pulse-height shaper amplifiers (PHSA) 104, 106, 108, 110, 112, 114, 116, and 118, a plurality of analog-to-digital (A-to-D) converters 120, 122, 124, 126, 128, 130, 132, 134, and 136, a plurality of spectrum memory circuits (SMCs) 138, 140, 142, 144, 146, 148, 150, 152, and 154 allowing pulse height spectra to be acquired, a plurality of correction devices (CDs) 156, 158, 160, 162, 164, 166, 168, and 170, a processor 190, an input device 192, a display device 194, and a memory device 195. As used herein, the term processor is not limited to just those integrated circuits referred to in the art as a processor, but broadly refers to a computer, a microcontroller, a microcomputer, a programmable logic controller, an application specific integrated circuit, and any other programmable circuit. The computer may include a device, such as, a floppy disk drive or CD-ROM drive, for reading data including the methods for identifying a substance from a computer-readable medium, such as a floppy disk, a compact disc-read only memory (CD-ROM), a magneto-optical disk (MOD), and/or a digital versatile disc (DVD). In an alternative embodiment, processor 190 executes instructions stored in firmware. Examples of display device 194 include a liquid crystal display (LCD) and a cathode ray tube (CRT). Examples of input device 192 include a mouse and a keyboard. Examples of memory device 195 include a random access memory (RAM) and a read-only memory (ROM). An example of each correction device 156, 158, 160, 162, 164, 166, 168, and 170 include a divider circuit. Each spectrum memory circuit 138, 140, 142, 144, 146, 148, 150, 152, and 154 includes an adder and a memory device, such as a RAM or a ROM.

Detector element 20 is coupled to analog-to-digital converter 120, and detector elements 22, 24, 26, 28, 30, 32, 34, and 36 are coupled to pulse-height shaper amplifiers 104, 106, 108, 110, 112, 114, 116, and 118, respectively. Detector element 20 generates an electrical output signal 196 by detecting primary beam 83 and detector elements 22, 24, 26, 28, 30, 32, 34, and 36 generate a plurality of electrical output signals 198, 200, 202, 204, 206, 208, 210, and 212 by detecting scattered radiation. For example, detector element 22 generates electrical output signal 198 for each scattered X-ray photon incident on detector element 22. Each pulse-height shaper amplifier amplifies an electrical output signal received from a corresponding detector element. For example, pulse-height shaper amplifier 104 amplifies electrical output signal 198 and pulse-height shaper amplifier 106 amplifies electrical output signal 200. Pulse-height shaper amplifiers 104, 106, 108, 110, 112, 114, 116, and 118 have a gain factor determined by processor 190.

An amplitude of an electrical output signal output from a detector element is proportional to an energy of an X-ray quantum that is detected by the detector element to generate the electrical output signal. For example, an amplitude of electrical output signal 196 is proportional to an energy of an X-ray quantum in primary beam 83 detected by detector element 20. As another example, an amplitude of electrical output signal 198 is proportional to an energy of an X-ray quantum within scattered radiation that is detected by detector element 22.

A pulse-height shaper amplifier generates an amplified output signal by amplifying an electrical output signal generated from a detector element. For example, pulse-height shaper amplifier 104 generates an amplified output signal 216 by amplifying electrical output signal 198 and pulse-height shaper amplifier 106 generates an amplified output signal 218 by amplifying electrical output signal 200. Similarly, a plurality of amplified output signals 220, 222, 224, 226, 228, and 230 are generated. An analog-to-digital converter converts an output signal from an analog form to a digital form to generate a digital output signal. For example, analog-to-digital converter 120 converts electrical output signal 196 from an analog form to a digital format to generate a digital output signal 232, and analog-to-digital converter 122 converts amplified output signal 216 from an analog form to a digital format to generate a digital output signal 234. Similarly, a plurality of digital output signals 236, 238, 240, 242, 244, 246, and 248 are generated by analog-to-digital converters 124, 126, 128, 130, 132, 134, and 136, respectively. A digital value of a digital output signal generated by an analog-to-digital converter represents an amplitude of energy of a pulse of an amplified output signal. For example, a digital value of digital output signal 234 output by analog-to-digital converter 122 is a value of an amplitude of a pulse of amplified output signal 216. Each pulse is generated by an X-ray quantum, such as an X-ray photon.

An adder of a spectrum memory circuit adds a number of pulses in a digital output signal. For example, when analog-to-digital converter 122 converts a pulse of amplified output signal 216 into digital output signal 234 to determine an amplitude of the pulse of amplified output signal 216, an adder within spectrum memory circuit 140 increments, by one, a value within a memory device of spectrum memory circuit 140. Accordingly, at an end of an X-ray examination of substance 82, a memory device within a spectrum memory circuit stores a number of X-ray quanta detected by a detector element. For example, a memory device within spectrum memory circuit 142 stores a number of X-ray photons detected by detector element 24 and each of the X-ray photons has an amplitude of energy or alternatively an amplitude of intensity that is determined by analog-to-digital converter 124.

A correction device receives a number of X-ray quanta that have a range of energies and are stored within a memory device of one of spectrum memory circuits 140, 142, 144, 146, 148, 150, 152, and 154, and divides the number of X-ray quanta by a number of X-ray quanta having the range of energies received from a memory device of spectrum memory circuit 138. For example, correction device 156 receives a number of X-ray photons having a range of energies from a memory device of spectrum memory circuit 140, and divides the number by a number of X-ray photons having the range received from a memory device of spectrum memory circuit 138. Each correction device outputs a correction output signal that represents a range of energies within X-ray quanta received by a detector element. For example, correction device 156 outputs a correction output signal 280 representing an energy spectrum or alternatively an intensity spectrum within X-ray quanta detected by detector element 22. As another example, correction device 158 outputs correction output signal 282 representing an energy spectrum within X-ray quanta detector element 24. Similarly, a plurality of correction output signals 284, 286, 288, 290, 292, and 294 are generated by correction devices 160, 162, 164, 166, 168, and 170, respectively.

It is noted that a number of pulse-height shaper amplifiers 104, 106, 108, 110, 112, 114, 116, and 118 changes with a number of scatter detector elements 22, 24, 26, 28, 30, 32, 34, and 36. For example, five pulse-height shaper amplifiers are used for amplifying signals received from five corresponding scatter detector elements. As another example, four pulse-height shaper amplifiers are used for amplifying signals received from four corresponding scatter detector elements. Similarly, a number of analog-to-digital converters 120, 122, 124, 126, 128, 130, 132, 134, and 136 changes with a number of detector elements 20, 22, 24, 26, 28, 30, 32, 34, and 36 and a number of spectrum memory circuits 138, 140, 142, 144, 146, 148, 150, 152, and 154 changes with the number of detector elements 20, 22, 24, 26, 28, 30, 32, 34, and 36.

FIG. 3 is a block diagram of an embodiment of a system 400 for identifying a substance. System 400 includes detector element 21 of transmission detector 17, scatter detector elements 40, 42, 44, 46, 48, 50, 52, and 54, a plurality of pulse-height shaper amplifiers (PHSA) 404, 406, 408, 410, 412, 414, 416, and 418, a plurality of analog-to-digital (A-to-D) converters 420, 422, 424, 426, 428, 430, 432, 434, and 436, a plurality of spectrum memory circuits (SMCs) 438, 440, 442, 444, 446, 448, 450, 452, and 454 allowing pulse height spectra to be acquired, a plurality of correction devices (CDs) 456, 458, 460, 462, 464, 466, 468, and 470, processor 190, input device 192, display device 194, and memory device 195. An example of each of correction devices 456, 458, 460, 462, 464, 466, 468, and 470 include a divider circuit. Each spectrum memory circuit 438, 440, 442, 444, 446, 448, 450, 452, and 454 include an adder and a memory device, such as a RAM or a ROM.

Transmission detector element 21 generates an electrical output signal 496 by detecting primary beam 84 and scatter detector elements 40, 42, 44, 46, 48, 50, 52, and 54 generate a plurality of electrical output signals 498, 500, 502, 504, 506, 508, 510, and 512 by detecting scattered radiation. For example, transmission detector element 21 generates electrical output signal 496 for X-ray photons incident on transmission detector element 21. Scatter detector elements 40, 42, 44, 46, 48, 50, 52, and 54 are coupled to pulse-height shaper amplifiers 404, 406, 408, 410, 412, 414, 416, and 418, respectively. Each pulse-height shaped amplifier amplifies an electrical output signal received from a corresponding detector element. For example, pulse-height shaper amplifier 404 amplifies electrical output signal 498. Pulse-height shaper amplifiers 404, 406, 408, 410, 412, 414, 416, and 418 have a gain factor determined by processor 190.

An amplitude of an electrical output signal output from a detector element is proportional to an energy of an X-ray quantum that is detected by the detector element to generate the electrical output signal. For example, an amplitude of electrical output signal 496 is proportional to an energy of an X-ray quantum in primary beam 84 detected by detector element 21. As another example, an amplitude of electrical output signal 498 is proportional to an energy of an X-ray quantum within scattered radiation that is detected by detector element 40.

A pulse-height shaper amplifier generates an amplified output signal by amplifying an electrical output signal generated from a detector element. For example, pulse-height shaper amplifier 404 generates an amplified output signal 516 by amplifying electrical output signal 498 and pulse-height shaper amplifier 406 generates an amplified output signal 518 by amplifying electrical output signal 500. Similarly, a plurality of amplified output signals 520, 522, 524, 526, 528, and 530 are generated. An analog-to-digital converter converts an output signal from an analog form to a digital form to generate a digital output signal. For example, analog-to-digital converter 420 converts electrical output signal 496 from an analog form to a digital format to generate a digital output signal 532 and analog-to-digital converter 422 converts amplified output signal 516 from an analog form to a digital format to generate a digital output signal 534. Similarly, a plurality of digital output signals 536, 538, 540, 542, 544, 546, and 548 are generated by analog-to-digital converters 424, 426, 428, 430, 432, 434, and 436, respectively. A digital value of a digital output signal generated by an analog-to-digital converter represents an amplitude of energy or alternatively an amplitude of intensity of a pulse of an amplified output signal. For example, a digital value of digital output signal 534 output by analog-to-digital converter 422 is a value of an amplitude of a pulse of amplified output signal 516.

An adder of a spectrum memory circuit adds a number of pulses in a digital output signal. For example, when analog-to-digital converter 422 converts a pulse of amplified output signal 516 into digital output signal 534 to determine an amplitude of the pulse of amplified output signal 516, an adder within spectrum memory circuit 440 increments, by one, a value within a memory device of spectrum memory circuit 440. Accordingly, at an end of an X-ray examination of substance 82, a memory device within a spectrum memory circuit stores a number of X-ray quanta detected by a detector element. For example, a memory device within spectrum memory circuit 442 stores a number of X-ray photons detected by detector element 42 and each of the X-ray photons has an amplitude of energy that is determined by analog-to-digital converter 424.

A correction device receives a number of X-ray quanta that have a range of energies and are stored within a memory device of one of spectrum memory circuits 440, 442, 444, 446, 448, 450, 452, and 454, and divides the number of X-ray quanta by a number of X-ray quanta having the range of energies received from a memory device of spectrum memory circuit 438. For example, correction device 456 receives a number of X-ray photons having a range of energies from a memory device of spectrum memory circuit 440, and divides the number of X-ray photons by a number of X-ray photons having the range received from a memory device of spectrum memory circuit 438. Each correction device outputs a correction output signal that represents a range of energies within X-ray quanta received by a corresponding detector element. For example, correction device 456 outputs a correction output signal 580 representing an energy spectrum or alternatively an intensity spectrum within X-ray quanta detected by detector element 40. As another example, correction device 458 outputs correction output signal 582 representing an energy spectrum within X-ray quanta detected by detector element 42. Similarly, a plurality of correction output signals 584, 586, 588, 590, 592, and 594 are generated by correction devices 460, 462, 464, 466, 468, and 470, respectively.

Processor 190 receives correction output signals 280, 282, 284, 286, 288, 290, 292, 294, 580, 582, 584, 586, 588, 590, 592, and 594 to generate a momentum transfer x, measured in inverse nanometers (nm⁻¹), from an energy spectrum r(E) of energy E of X-ray quanta within scattered radiation detected by scatter detectors 16 and 18 (shown in FIG. 1). Processor 190 generates the momentum transfer x by applying x=(E/hc)sin(θ/2)  Eq. (1)

where c is a speed of light, h is Planck's constant, θ represents a constant scatter angle of X-ray quanta of scattered radiation detected by scatter detectors 16 and 18. Examples of θ include scatter angles 96 and 97 (shown in FIG. 1). Processor 190 relates the energy E to the momentum transfer x by equation (1). Mechanical dimensions of secondary collimator 76 (shown in FIG. 1) defines the scatter angle θ. The secondary collimator 76 (shown in FIG. 1) restricts scattered radiation that does not have the scatter angle θ. Processor 190 receives the scatter angle θ from a user, such as a human being, via input device 192. Processor 190 generates a diffraction profile of substance 82 (shown in FIG. 1) by calculating a number of scatter X-ray photons that are detected by scatter detectors 16 and 18 and by plotting the number of X-ray photons versus the momentum transfer x.

It is noted that a number of pulse-height shape amplifiers 404, 406, 408, 410, 412, 414, 416, and 418 changes with a number of scatter detector elements 40, 42, 44, 46, 48, 50, 52, and 54. For example, five pulse-height shaper amplifiers are used for amplifying signals received from five corresponding scatter detector elements. As another example, four pulse-height shaper amplifiers are used for amplifying signals received from four corresponding scatter detector elements. Similarly, a number of analog-to-digital converters 420, 422, 424, 426, 428, 430, 432, 434, and 436 changes with a number of detector elements 21, 40, 42, 44, 46, 48, 50, 52, and 54, and a number of spectrum memory circuits 438, 440, 442, 444, 446, 448, 450, 452, and 454 changes with the number of detector elements 21, 40, 42, 44, 46, 48, 50, 52, and 54.

FIG. 4 is a block diagram of an embodiment of a system 600 for identifying a substance. System 600 includes a gantry 602, processor 190, input device 192, display device 194, and memory device 195. Gantry 602 is an example of gantry 12 (shown in FIG. 1). Gantry 602 includes a power supply 604, an X-ray generation control unit 606, X-ray sources 64, 66, and 68, a data acquisition system (DAS) 608, and transmission detector 17. Alternatively, power supply 604 is located outside gantry 602.

X-ray generation control unit 606 includes a pulse generator (not shown) that is coupled to processor 190 and that receives power from power supply 604. Power supply 604 is coupled to X-ray sources 64, 66, and 68 to supply power to X-ray sources 64, 66, and 68.

Processor 190 issues a command, such as a first on command, a second on command, a first off command, and/or a second off command. Upon receiving the first on command from processor 190, the pulse generator generates a pulse and transmits the pulse to X-ray source 66. Upon receiving a pulse from the pulse generator, X-ray source 66 generates X-ray beam 67 under a potential applied by power supply 604. Similarly, upon receiving the first off command signal from processor 190, the pulse generator stops transmitting a pulse to X-ray source 66 and X-ray source 66 stops generating X-ray beam 67. Furthermore, upon receiving the second on command signal from processor 190, the pulse generator generates and transmits a pulse to any one of the remaining X-ray sources 64 and 68, and any one of the remaining X-ray sources 64 and 68 generates an X-ray beam. For example, upon receiving the second on command signal from processor 190, the pulse generator generates and transmits a pulse to X-ray source 64 and X-ray source 64 generates an X-ray beam 610. In this example, upon receiving the second off command signal from processor 190, the pulse generator stops transmitting a pulse to X-ray source 64, and the X-ray source 64 stops generating an X-ray beam.

DAS 608 samples analog data, such as electrical output signals, generated from a plurality of detector elements, including detector elements 20 and 21, of transmission detector 17 and converts the analog data to a plurality of digital signals for subsequent processing.

FIG. 5 is an isometric view of another embodiment of a system 700 for identifying a substance. System 700 includes a gantry 702. Gantry 702 includes X-ray sources 64, 66, and 68, primary collimator 14, secondary collimator 76, scatter detectors 16 and 18, transmission detector 17, a secondary collimator 704, and a plurality of scatter detectors 708 and 710 that detect coherent scatter. Gantry 702 is an example of gantry 12 (shown in FIG. 1). In one embodiment, secondary collimator 704 has the same structure as that of secondary collimator 76. Scatter detectors 708 and 710 are located on a side of transmission detector 17 and opposite to a side where scatter detectors 16 and 18 are located. A number of scatter detectors on a side of transmission detector 17 may be the same as a number of scatter detectors on another side of transmission detector 17. For example, if five scatter detectors are placed on a first side of transmission detector 17 where scatter detectors 16 and 18 are placed, five scatter detectors may be placed on the opposite second side of transmission detector 17 where scatter detectors 708 and 710 are placed. A shortest distance between a center of scatter detector 708 and a center of scatter detector 710 may be the same as shortest distance 56 between a center of scatter detector 16 and a center of scatter detector 18. Scatter detectors 708 and 710 are separated from each other by a gap. In one embodiment, each scatter detector 708 and 710 may have the same number of detector elements as scatter detector 16.

Primary beams 83 and 84 pass through points 85 and 86 on substance 82 to generate scattered radiation 88 (FIG. 1), 89 (FIG. 1), 90 (FIG. 1), 91 (FIG. 1), 712, 714, 716, and 718. For example, primary beam 83 passes through point 85 on substance 82 to generate scattered radiation 88 (FIG. 1), 89 (FIG. 1), 712, and 714. As another example, primary beam 84 passes through point 86 on substance 82 to generate scattered radiation 90 (FIG. 1), 91 (FIG. 1), 716 and 718.

Secondary collimator 704 is located between support 80 and scatter detectors 708 and 710. Secondary collimator 704 includes a number of collimator elements to ensure that scattered radiation arriving at scatter detectors 708 and 710 have constant scatter angles with respect to primary beams 83 and 84. For example, the collimator elements of secondary collimator 704 are arranged parallel to a direction of scattered radiation 712 and of scattered radiation 716 to absorb scattered radiation that is not parallel to the direction of scattered radiation 712 and of scattered radiation 716.

The number of collimator elements in secondary collimator 704 is equal to or, alternatively, greater than a number of detector elements of scatter detectors 708 or 710. The collimator elements are arranged such that scattered radiation between neighboring collimator elements is incident on one of the detector elements. The collimator elements of scatter detectors 708 and 710 are made of a radiation-absorbing material, such as, a copper alloy or a silver alloy.

Underneath support 80, scatter detectors 708 and 710 are positioned and configured to measure photon energies of scattered radiation detected by scatter detectors 708 and 710. Scatter detectors 16 and 18, transmission detector 17, and scatter detectors 708 and 710 may lie in the same yz plane. Each scatter detector 708 and 710 measures the X-ray photons within scattered radiation in an energy-sensitive manner by outputting a plurality of electrical output signals linearly dependent on a plurality of energies of the X-ray photons detected from within scattered radiation. Scatter detector 708 measures scattered radiation 712 received at a point 720 on scatter detector 708 and scatter detector 710 measures scattered radiation 716 received at a point 722 on scatter detector 710.

Scatter detectors 708 and 710 detect scattered radiation to generate a plurality of electrical output signals. Scatter detector 708 detects scattered radiation 712 generated upon intersection of primary beam 83 with point 85. Moreover, scatter detector 708 detects scattered radiation 718 generated upon intersection of primary beam 84 with point 86. Scatter detector 710 detects scattered radiation 716 generated upon intersection of primary beam 84 with point 86. Moreover, scatter detector 710 detects at least a portion of scattered radiation 714 generated upon intersection of primary beam 83 with point 85. A scatter angle formed between primary beam 83 and scattered radiation 712 is equal to a scatter angle formed between primary beam 84 and scattered radiation 716. In an alternative embodiment, system 700 does not include secondary collimators 76 and/or 704.

Scatter detector 708 is connected to a system similar to system 100 (shown in FIG. 2) to generate a plurality of correction output signals, such as correction output signals 280, 282, 284, 286, 288, 290, 292, and 294 (shown in FIG. 2). Moreover, scatter detector 710 is connected to a system similar to system 400 (shown in FIG. 3) to generate a plurality of correction output signals, such as correction output signals 580, 582, 584, 586, 588, 590, 592, and 594 (shown in FIG. 3). Processor 190 receives the correction output signals generated by the system that is similar to system 100 and that is connected to scatter detector 708, and the correction output signals generated by the system that is similar to system 400 and that is connected to scatter detector 710, and generates a diffraction profile of substance 82.

FIGS. 6-12 are a flowchart of an embodiment of a method for identifying a substance and FIG. 13 shows a plurality of graphs 900 and 901. Graph 900 is a diffraction profile D_(sub)(x) of substance 82 that is generated 903 by processor 190. Graph 900 is a histogram having a plurality of intensity values at a plurality of momentum transfer values, such as x_(sub1), x_(sub2), and x_(sub3), of the momentum transfer x. As an example, when an operating voltage of X-ray source 66 is 160 kilovolts (kV), processor 190 calculates, by applying equation (1), an energy value E₁ of the energy E to be 160 keV, calculates, by applying equation (1), an energy value E₂ of the energy E to be 140 keV, and calculates, by applying equation (1), an energy value E₃ of the energy value E to be photon energy 120 keV. In this example, the photon energy values E₁, E₂, and E₃ correspond, through equation (1), to x_(sub1) of four inverse nanometers, to x_(sub2) of 3.5 inverse nanometers, and to x_(sub3) of three inverse nanometers, respectively. Graph 900 represents a histogram of a number of X-ray photons detected by scatter detectors 16 and 18 versus the momentum transfer x of the X-ray photons.

Graph 901 is a diffraction profile D_(calib)(x) of a calibration substance, such as a white scatterer. An example of the white scatterer includes a combination of Lucite chippings, Cellulose paste, and water. The diffraction profile D_(calib)(x) of the calibration substance is generated 905 in a similar manner as generation 903 of D_(sub)(x). For example, the white scatterer is placed periodically, such as once each month or every 15 days, on a table within an object space, such as opening 65, of system 700, and is moved within the object space. In the example, upon receiving the correction output signals generated by the system that is similar to system 100 (shown in FIG. 2) and that is connected to scatter detector 708, and receiving the correction output signals generated by the system that is similar to system 400 (shown in FIG. 3) and that is connected to scatter detector 710, processor 190 generates the diffraction profile D_(calib)(x) representing a number of photons detected by scatter detectors 708 and 710 versus the momentum transfer x. Graph 901 is a histogram having a plurality of intensity values at a plurality of momentum transfer values of the momentum transfer x when the calibration substance is placed within system 700. Graph 901 represents a histogram of a number of X-ray photons detected by scatter detectors 708 and 710 versus the momentum transfer x of the X-ray photons when the calibration substance is placed within system 700.

A number of X-ray photons detected by scatter detectors 16 and 18 or scatter detectors 708 and 710 is plotted along an ordinate 902 and a momentum transfer x is plotted along an abscissa 904. As an example, abscissa 904 extends from and includes zero inverse nanometers (nm⁻¹) to 10 nm⁻¹. An example of a total number of bins of numbers of X-ray photons plotted on ordinate 902 lies between 64 and 1024. An example of a number of X-ray photons detected by each scatter detector 16, 18, 708, and 710 per examination lies between 1000 and 100,000.

The diffraction profile D_(sub)(x) ranging from x≧3 nm⁻¹ is generally dominated by coherent scatter from free atoms of substance 82. In a tip region, extending from x_(sub1) to x_(sub3), of graph 900, an intensity of scattered radiation is proportional to a product of density, such as a mean density, of substance 82 and a power, such as ranging between 2.5 and 3.5, of a mean atomic number of a plurality of materials within substance 82.

Referring to FIG. 7, processor 190 determines 912 whether at least one channel of the diffraction profile D_(sub)(x) has a zero count of photons. In order to make such determination, processor 190 determines 912 to start with a channel that is assigned a momentum transfer value x_(submax), as shown in FIG. 13. A channel is assigned a set of momentum transfer values on abscissa 904. An example of the set of momentum transfer values within a channel includes a range from and including 0.25 nm⁻¹ to 0.5 nm⁻¹. Another example of the set of momentum transfer values within a channel includes a range from and including 0.5 nm⁻¹ to 1 nm⁻¹. Yet another example of a set of momentum transfer values within a channel includes a momentum transfer value of 1.5 nm⁻¹. An example of a channel of the diffraction profile D_(sub)(x), having a zero count of photons, includes a channel with a momentum transfer value x_(sub0), as shown in FIG. 13. Another example of a channel of the diffraction profile D_(sub)(x), having a non-zero count of photons includes a channel with the momentum transfer value of x_(submax), as shown in FIG. 13.

Upon determining 912 that none of the channels of the diffraction profile D_(sub)(x) have a zero count, processor 190 calculates 914 a ratio D_(sub)(x)/D_(calib)(x) of the diffraction profiles 900 and 901. The ratio D_(sub)(x)/D_(calib)(x) is a normalized profile. Processor 190 further computes 916 a logarithm of the ratio D_(sub)(x)/D_(calib)(x) as a function L _(sub)(x)=log_(e) [D _(sub)(x)/D _(calib)(x)]  Eq. (2)

-   -   where the function L_(sub)(x) is a logarithmic profile ratio.

FIG. 14 shows a graph 924, which is a function L_(gas)(x) and an example of the function L_(sub)(x). Processor 190 generates graph 924 as a logarithm, to the base e, of a ratio of a diffraction profile D_(gas)(x) of gasoline and the diffraction profile D_(N)(x) versus the momentum transfer x. Gasoline, referred to herein as gas, is an example of substance 82. Processor 190 plots log_(e)[D_(gas)(x)/D_(N)(x)] on an ordinate 920 and plots the momentum transfer x on abscissa 904.

FIG. 15 shows a graph 926, which is a function L_(sulphuric)(x) and an example of the function L_(sub)(x). Processor 190 generates graph 926 as a logarithm, to the base e, of a ratio of a diffraction profile D_(sulphuric)(x) of sulphuric acid to the diffraction profile D_(N)(X) versus the momentum transfer x. Sulphuric acid (H₂SO₄) is an example of substance 82. Processor 190 plots log_(e)[D_(sulphuric)(x)/D_(N)(x)] on ordinate 920 and plots the momentum transfer x on abscissa 904.

Referring back to FIG. 7, processor 190 fits 930 a straight line m₁x+c₁ to at least one value of L_(sub)(x) within a range from and including x_(sub4) to x_(sub5) of the function L_(sub)(x), where m₁ is a gradient of the straight line and c₁ is an intercept of the straight line with ordinate 920, m₁ may be a positive or a negative number, and c₁ may be a positive or negative number. An example of x_(sub4) includes 1.5 nm⁻¹. Another example of x_(sub4) includes 1.7 nm⁻¹. An example of x_(sub5) includes 2.1 nm⁻¹. Another example of x_(sub5) includes 2.3 nm⁻¹. As an example, processor 190 fits a straight line 936 (shown in FIG. 14) to all values of L_(gas)(x) within a range from and including x_(sub4) to x_(sub5). As an example, processor 190 fits a straight line 938 (shown in FIG. 15) to all values of L_(sulphuric)(x) within a range from and including x_(sub4) to x_(sub5). As still another example, processor 190 fits the straight line m₁x+c₁ to all values of L_(sub)(x) within a range from and including x_(sub4) to x_(sub5) by applying a linear regression fit to the values. As another example, processor 190 fits the straight line m₁x+c₁ to all values of L_(sub)(x) within a range from and including x_(sub4) to x_(sub5) by applying a weighted linear regression fit. In applying the weighted linear regression fit, processor 190 applies a higher weight to some of the values of L_(sub)(x) within a range from and including x_(sub4) to x_(sub5) that are less noisy than to the remaining of the values that are more noisy. As yet another example, processor 190 divides all values of L_(sub)(x) within a range from and including x_(sub4) to x_(sub5) into two windows. Processor 190 averages values of L_(sub)(x) within each window and fits the straight line m₁x+c₁ to the two average values. Each straight line 936 and 938 is an example of the straight line m₁x+c₁.

Processor 190 may fit the straight line m₁x+c₁ by applying a least squares fit approach. As another example, processor 190 determines the straight line m₁x+c₁ that fits all values of L_(sub)(x) between x_(sub4) and x_(sub5) by minimizing a sum of squares of perpendicular distances between the straight line and the values. As yet another example, processor 190 determines the straight line m₁x+c₁ that fits all values of L_(sub)(x) between x_(sub4) and x_(sub5) by minimizing a sum of squares of vertical distances between the straight line and the values. As yet another example, processor 190 fits the straight line m₁x+c₁ to L_(sub)(x) by determining that the straight line is connected to L_(sub)(x) at x_(sub4) and at x_(sub5).

Processor 190 calculates 940 an effective atomic number Z_(effsub) of substance 82 as a function of the gradient m₁ by applying m ₁ =F(Z _(effsub) , Z _(effcalib)),  Eq. (3)

where Z_(effcalib) is an effective atomic number of the calibration substance. Processor 190 receives the Z_(effcalib) from a user via input device 192 and stores the Z_(effcalib) in memory device 195. An example of Z_(effcalib) is an atomic number of nitrogen. Another example of Z_(effcalib) is an effective atomic number of the white scatterer.

Processor 190 determines the function F from substances with known effective atomic numbers. For example, a substance with known effective atomic number Z_(known1) is scanned by using system 10 in the same manner as that of substance 82 to generate a plurality of electrical signals, which are received from scatter detectors 16 and 18. The substance with effective atomic number Z_(known1) is a known substance. An example of the effective atomic number Z_(known1) includes an atomic number of six for carbon. Another example of the effective atomic number Z_(known1) includes an atomic number of eight for oxygen.

Processor 190 of system 100 receives a plurality of signals from scatter detectors 16 and 18 and executes 903 (shown in FIG. 6) on the known substance instead of substance 82 to generate a diffraction profile D_(known1)(x) of the known substance. Processor 190 further calculates a ratio D_(known1)(x)/D_(calib)(x) instead of calculating 914 ratio D_(sub)(x)ID_(calib)(x), computes a log_(e)(D_(known1)(x)ID_(calib)(x)) instead of computing 916 log_(e)(D_(sub)(x)/D_(calib)(x)), and fits a straight line to at least one value of the ratio log_(e)(D_(known1)(x)/D_(calib)(x)) between x_(sub4) and x_(sub5) instead of fitting 930, determines a gradient m_(known1) of the straight line, and determines that the gradient m_(known1) is a function F_(known1), such as a best fit function, of the two effective atomic numbers Z_(known1) and Z_(effcalib). The function F_(known1) corresponds to the effective atomic number Z_(known1).

Processor 190 also determines a plurality of additional functions F_(known2), F_(known3), F_(known4), . . . , F_(knownN) of N known substances with corresponding effective atomic numbers Z_(known2), Z_(known3), . . . , Z_(knownN) in the same manner as that of determining Z_(known1) and creates a list of the functions F_(known1), F_(known2), F_(known3), F_(known4), . . . , F_(knownN) versus known effective atomic numbers Z_(known1), Z_(known2), . . . , Z_(knownN). Processor 190 determines the function F as a relationship, such as linear or polynomial, between the functions F_(known1), F_(known2), F_(known3), F_(known4), . . . , F_(knownN) and the known effective atomic numbers Z_(known1), Z_(known2), . . . , Z_(knownN).

Processor 190 determines an inverse function F⁻¹ and calculates 940 the effective atomic number Z_(effsub) as a function of m₁ and Z_(effcalib). For example, processor 190 calculates the effective atomic number Z_(effsub) as F⁻¹ (m₁)+Z_(effcalib), where F⁻¹ is the inverse of the function F. Processor 190 extrapolates 942 the straight line m₁x+c₁ from x_(sub4) to a momentum transfer value x_(sub6), shown in FIGS. 14 and 15. For example, processor 190 extrapolates straight line 938 (shown in FIG. 15) from x_(sub4) to x_(sub6). As another example, processor 190 extrapolates straight line 936 (shown in FIG. 14) from x_(sub4) to x_(sub6). An example of x_(sub6) includes 1.5 nm⁻¹. Another example of x_(sub6) includes 1.3 nm⁻¹. Another example of x_(sub6) includes 2 nm⁻¹. Yet another example of x_(sub6) includes x_(sub4) in which case processor 190 does not need to extrapolate the straight line m₁x+c₁ from x_(sub4) to x_(sub6).

Processor 190 calculates 950 a negative of the gradient m₁ and generates 952 a straight line m₂x+c₂, where m₂ is a gradient of the straight line and c₂ is an intercept of the straight line with ordinate 920. As an example, m₂=−m₁. As another example, m₂=−1.1 m₁. An example of the straight line m₂x+c₂ is shown as a straight line 956 in FIG. 14. Another example of the straight line m₂x+c₂ is shown as a straight line 958 in FIG. 15.

Processor 190 extrapolates 962 the straight line m₂x+c₂ from x_(sub6) to a momentum transfer value x_(sub7) shown in FIGS. 14 and 15. An example of x_(sub7) is 0 nm⁻¹. Another example of x_(sub7) is 0.25 nm⁻¹. Processor determines 966 a difference between the function L_(sub)(x) and a set of the straight lines m₁x+c₁ and m₂x+c₂. For example, processor 190 determines a vertical difference between the function L_(sub)(x) between x_(sub5) and x_(sub6) and the straight line m₁x+c₁ between x_(sub5) and x_(sub6). In this example, processor 190 also determines a vertical difference between the function L_(sub)(x) between x_(sub6) and x_(sub7) and the straight line m₂x+c₂ between x_(sub6) and x_(sub7). An example of a vertical difference between a value of L_(sub)(x) and straight line 936 is a distance 970 shown in FIG. 14. Another example of a vertical difference between a value of L_(sub)(x) and straight line 958 is a distance 972 shown in FIG. 15.

Processor 190 calculates 976 a relative molecular interference function s_(relative)(x) as an antilog, which is an exponent of the difference between the function L_(sub)(x) and the set of straight lines m₁x+c₁ and m₂x+c₂. The relative molecular interference function is a ratio of a molecular interference s_(sub)(x) of substance 82 to a molecular interference function s_(calib)(x) of the calibration substance.

Processor 190 computes 978 the molecular interference function s_(sub)(x) from the relative molecular interference function s_(relative)(x) by multiplying the relative molecular interference function s_(relative)(x) with the molecular interference function s_(calib)(x). Processor 190 receives the molecular interference function s_(calib)(x) from the user via input device 192 and stores the molecular interference function in memory device 195.

Referring to FIGS. 7 and 10, upon determining 912 that at least one channel of the diffraction profile D_(sub)(x) has a zero count of photons, processor 190 determines 982 a number P of consecutive channels of the diffraction profile D_(sub)(x), where each P channel has a zero count of photons. The consecutive channels have consecutive momentum transfer values. For example, one of the consecutive channels has a plurality of momentum transfer values ranging from 1.25 nm⁻¹ to 1.5 nm⁻¹ and another one of the consecutive channels has a plurality of momentum transfer values ranging from 1.5 nm⁻¹ to 1.6 nm⁻¹. As another example, one of the consecutive channels has a momentum transfer values of 1.2 nm⁻¹ and another one of the consecutive channels has a momentum transfer value of 1.3 nm⁻¹.

Processor 190 determines 982 the number P of consecutive channels until processor 190 determines 986 that a (P+1)^(th) channel of the diffraction profile D_(sub)(x) having a non-zero count of photons is obtained. An example of the (P+1)^(th) channel having a non-zero count of photons is a channel having a plurality of momentum transfer values ranging from the momentum transfer value x_(sub4) to the momentum transfer value x_(sub5). Another example of the (P+1)^(th) channel having a non-zero photon count is a channel having the momentum transfer value X_(sub4). The (P+1)^(th) channel is consecutive to the P^(th) channel. For example, if the P^(th) channel has a plurality of momentum transfer values ranging from 1.5 nm⁻¹ to 1.4 nm⁻¹, the (P+1)^(th) channel has a plurality of momentum transfer values ranging from 1.4 nm⁻¹ to 1.3 nm⁻¹. As another example, if the P^(th) channel has a momentum transfer value of 1.4 nm⁻¹, the (P+1)^(th) channel has a momentum transfer value of 1.3 nm⁻¹. Upon determining 986 that the (P+1)^(th) channel of the diffraction profile D_(sub)(x) having a non-zero count is obtained, processor 190 sums a number of photons within the P+1channels of the diffraction profile D_(sub)(x) by applying

$\begin{matrix} {{G_{{sub}{({P + 1})}}(x)} = {\sum\limits_{i = 1}^{P + 1}{D_{sub}\left( x_{i} \right)}}} & {{Eq}.\mspace{14mu}(4)} \end{matrix}$

where G_(sub(P+1))(x) is a diffraction profile of substance 82 for momentum transfer values between x₁ and x_(P+1). Processor generates 988 the diffraction profile G_(sub(P+1))(x). An example of x_(i), where i=1, is x_(submax). Another example of x_(i), where i=1, is X_(sub0).

Processor 190 repeats techniques 912, 982, 986, and 988 to generate 996 a diffraction profile:

$\begin{matrix} {{G_{{sub}{({P + Q})}}(x)} = {\sum\limits_{i = {P + 2}}^{P + Q}{D_{sub}\left( x_{i} \right)}}} & {{Eq}.\mspace{14mu}(5)} \end{matrix}$

for the remaining channels of the diffraction profile D_(sub)(x) until processor 190 determines 998 that an end of the diffraction profile D_(sub)(x) is reached. G_(sub(P+Q))(x) is a diffraction profile of substance 82 for momentum transfer values ranging from x_(P+2) to x_(P+Q). An end of the diffraction profile D_(sub)(x) is reached when P+Q is equal to X_(sub0), where processor 190 determines 912 to start with x_(submax).

Processor 190 generates 1002 a diffraction profile G_(sub)(x) of substance 82 as G_(sub(P+1))(x) for momentum transfer value x₁ to x_(P+1) and as G_(sub(P+Q))(x) for momentum transfer values x_(P+2) to x_(P+Q). Processor 190 executes techniques 914, 916, 930, 940, 942, 950, 952, 962, 966, 976, and 978, at 1003, except replaces D_(sub)(x) with G_(sub)(x). For example, processor 190 calculates a ratio G_(sub)(x)/G_(calib)(x) instead of calculating 914 the ratio D_(sub)(x)/D_(calib)(x). As another example, processor 190 executes techniques 916, 930, 940, 942, 950, 952, 962, 966, 976, and 978 by using the ratio G_(sub)(x)/G_(calib)(x) instead of the ratio D_(sub)(x)/D_(calib)(x) to generate an effective atomic number and to generate a molecular interference function of substance 82. Processor 190 determines the diffraction profile G_(calib)(x) in the same manner as that of determining the diffraction profile G_(sub)(x) except that the calibration system is placed within system 10 instead of substance 82.

In an alternative embodiment, processor 190 determines 912 to start with a channel having the momentum transfer value x_(sub0). In a further alternative embodiment, an end of the diffraction profile D_(sub)(x) is reached when x_(P+Q) is equal to x_(submax), where processor 190 determines 912 to start with x_(sub0).

FIGS. 16-18 are flowcharts of an embodiment of a method for identifying a substance. Processor 190 integrates 1010 intensities or cumulates a number of photons of a range from and including x_(sub7) to x_(sub5) of the diffraction profile D_(sub)(x) and integrates 1012 intensities or cumulates a number of photons of the diffraction profile D_(sub)(x) ranging from and including x_(sub4) to x_(sub5). Processor 190 determines 1014 a ratio of the integrated intensities or the integrated number of photons as a parameter

$\begin{matrix} {R_{sub} = \frac{\sum\limits_{i = {x\;}_{{sub}\; 7}}^{x_{{sub}\; 5}}{D_{sub}\left( x_{i} \right)}}{\sum\limits_{i = x_{{sub}\; 4}}^{x_{{sub}\; 5}}{D_{sub}\left( x_{i} \right)}}} & {{Eq}.\mspace{14mu}(6)} \end{matrix}$

Processor 190 further generates 1016 a diffraction profile D_(water)(x) in the same manner as that of generating the diffraction profile D_(sub)(x) of substance 82 except water is scanned instead of substance 82 by using system 10. For example, processor 190 receives from correction devices 156, 158, 160, 162, 164, 166, 168, 170, 456, 458, 460, 462, 464, 466, 468, and 470 a plurality of signals representing a count or a plurality of intensities of photons refracted from water, and determines the diffraction profile D_(water)(x). In this example, processor 190 integrates intensities or cumulates a number of photons of a range, from and including x_(sub7) to x_(sub5) of the diffraction profile D_(water)(x) and integrates intensities or cumulates a number of photons of the diffraction profile D_(water)(x) ranging from and including x_(sub4) to x_(sub5). Processor 190 determines 1018 a ratio of the integrated intensities or the integrated number of photons as a parameter

$\begin{matrix} {R_{water} = \frac{\sum\limits_{i = x_{{sub}\; 7}}^{x_{{sub}\; 5}}{D_{water}\left( x_{i} \right)}}{\sum\limits_{i = x_{{sub}\; 4}}^{x_{{sub}\; 5}}{D_{water}\left( x_{i} \right)}}} & {{Eq}.\mspace{14mu}(7)} \end{matrix}$

Processor 190 calculates 1020 a parameter, aquacity A_(sub), of substance 82 as a square root of a ratio of the parameters R_(sub) and R_(water) by applying

$\begin{matrix} {A_{sub} = \sqrt{\frac{R_{sub}}{R_{water}}}} & {{Eq}.\mspace{14mu}(8)} \end{matrix}$

Aquacity is water-likeness of a substance. Aquacity A_(sub) is based on a ratio of R_(sub) to R_(water), where R_(sub) is based on the intensities integrated 1010 within a range from and including x_(sub7) to x_(sub5) of the diffraction profile D_(sub)(x) and the intensities integrated 1012 within a range from and including x_(sub4) to x_(sub5) of the diffraction profile D_(sub)(x), and R_(water) is based on the intensities integrated within a range from and including x_(sub7) to x_(sub5) of the diffraction profile D_(water)(x) and the intensities integrated within a range from and including x_(sub4) to x_(sub5) of the diffraction profile D_(water)(x). The diffraction profile D_(sub)(x) is a function of the momentum transfer x, which is generated from correction output signals 280, 282, 284, 286, 288, 290, 292, 294, 580, 582, 584, 586, 588, 590, 592, and 594 and the correction output signals are generated based on electrical output signals 196, 198, 200, 202, 204, 206, 208, 210, 212, 496, 498, 500, 502, 504, 506, 508, 510, and 512. Accordingly, the effective aquacity A_(sub) is determined based on the electrical output signals 196, 198, 200, 202, 204, 206, 208, 210, 212, 496, 498, 500, 502, 504, 506, 508, 510, and 512.

Table I below includes parameters R and aquacities of a plurality of substances. Substance 82 may be any substance in Table I.

TABLE I Substance Parameter, R Aquacity Sodium Hydroxide (NaOH) 6.26 1.00 water 6.38 1.00 ironing starch 6.54 0.98 beer 7.14 0.94 Maggi ™ spice 7.20 0.94 vinegar 7.24 0.93 body lotion 7.27 0.93 Hydrochloric acid (HCl) 8.13 0.88 soja sauce 8.28 0.87 Zeozon ™ sunmilk 8.29 0.87 shaving cream 8.44 0.86 spirits 8.64 0.85 acetone 8.64 0.85 Hydrogen Peroxide (H₂O₂) 8.73 0.85 Delial ™ sunmilk 8.88 0.84 Coca-Cola ® drink 9.98 0.79 Sulphuric acid (H₂SO₄) 10.94 0.76 methyl alcohol 12.64 0.71 nithromethane 14.41 0.66 gun oil 15.32 0.64 ethyl alcohol 15.47 0.64 edible oil 16.71 0.61 diesel 21.78 0.54 gasoline 22.00 0.54 Gouda 35.23 0.42 paper 43.36 0.38 wool 45.59 0.37 Jelly baby 46.69 0.37 Teflon ™ 50.13 0.35 graphite 68.39 0.30 Polyethylene (PE) 122.02 0.23

In one embodiment, processor 190 generates Table I. Processor 190 determines 1022 whether the aquacity A_(sub) of substance 82 is greater than or equal to a first threshold, such as 0.5. Another example of the first threshold includes 0.51. Yet another example of the first threshold includes 0.52. Upon determining 1022 that the aquacity A_(sub) is greater than or equal to the first threshold, processor 190 determines 1024 that substance 82 includes a liquid, such as sodium hydroxide, water, ironing starch, beer, Maggi™ spice, vinegar, body lotion, hydrochloric acid, soja sauce, Zeozon™ sunmilk, shaving cream, spirits, acetone, hydrogen peroxide, Delial™ sunmilk, Coca-cola® drink, sulphuric acid, methyl alcohol, nithromethane, gun oil, ethyl alcohol, edible oil, diesel, or gasoline.

On the other hand, upon determining 1022 that the aquacity A_(sub) is less than the first threshold, processor 190 determines 1026 whether the aquacity A_(sub) is greater than or equal to a second threshold, such as 0.355. Another example of the second threshold includes 0.36. The second threshold is lower than the first threshold. Upon determining 1026 that the aquacity A_(sub) is greater than or equal to the second threshold, processor 190 determines 1028 that substance 82 is an amorphous solid, such as Gouda, paper, wool, or Jelly baby. On the other hand, upon determining 1028 that the aquacity A_(sub) is less than the second threshold, processor 190 determines 1030 that substance 82 includes a crystalline solid, such as Teflon™, graphite, or polyethylene.

Processor 190 determines 1032 the momentum transfer value x_(sub4), which is a lower limit for fitting the line m₁x+c₁ to the diffraction profile D_(sub)(x), by applying x _(lowlimit)=2−(A _(sub)/2)  Eq. (9)

-   -   where an example of x_(lowlimit) is equal to x_(sub4). Another         example of x_(lowlimit) is equal to x_(sub6). An upper limit for         fitting the line m₁x+c₁ to the diffraction profile D_(sub)(x) is         x_(sub5).

In an alternative embodiment, processor 190 executes 1010, 1012, 1014, 1016, 1018, 1020, 1022, 1024, 1026, 1028, 1030, and 1032 with D_(sub)(x) replaced by G_(sub)(x) and D_(water)(x) replaced by G_(water)(x). For example, processor 190 integrates 1010 a plurality of intensities or cumulates a number of photons of the diffraction profile G_(sub)(x) from and including the momentum transfer value x_(sub5) to x_(sub7) instead of D_(sub)(x). As another example, processor 190 integrates 1012 a plurality of intensities or cumulates a number of photons of the diffraction profile G_(sub)(x) from and including the momentum transfer value x_(sub4) to x_(sub5). As yet another example, at technique 1014, processor 190 divides an integrated intensity or a cumulative number of photons of the diffraction profile G_(sub)(x) over a range from and including the momentum transfer value x_(sub7) to x_(sub5) by an integrated intensity or a cumulative number of photons of the diffraction profile G_(sub)(x) integrated over a range from and including the momentum transfer value x_(sub4) to x_(sub5). As still another example, processor 190 generates 1016 a diffraction profile G_(water)(x) of water. G_(water)(x) is generated by processor 190 in the same manner as that of generating G_(sub)(x) except that water is scanned by system 10 instead of substance 82.

In an alternative embodiment, processor 190 executes 1010, 1012, 1014, 1016, 1018, 1020, 1022, 1024, 1026, 1028, 1030, and 1032 between 916 and 930 (shown in FIG. 7). In this embodiment, processor 190 fits the straight line m₁x+c₁ between x_(lowlimit) and x_(sub5).

Techniques illustrated in FIGS. 6-12 and 16-18, in some instances, may be performed sequentially, in parallel, or in an order other than that which is described. For example, the technique of 905 may be performed before performing the technique of 903. It should be appreciated that not all of the techniques described are required to be performed, that additional techniques may be added, and that some of the illustrated techniques may be substituted with other techniques. For example, the technique of 978 may not be performed.

A technical effect of the herein described method, processor, and system for identifying a substance includes using at least a plurality of values of the function L_(sub)(x) in a range from and including the momentum transfer value x_(sub5) to the momentum transfer value x_(sub6) to determine the effective atomic number Z_(effsub) of substance 82. The plurality of values of the function L_(sub)(x) helps average a plurality of oscillations in a molecular interference function determined by other techniques. The plurality of values of the function L_(sub)(x) represents a greater number of photons than a number of photons represented by a plurality of values of the diffraction profile D_(sub)(x) within the range from and including x_(sub1) to x_(sub3). The greater number of photons provides a better estimate of the effective atomic number Z_(effsub) than that provided by using the value of the diffraction profile D_(sub)(x) within the range from and including x_(sub1) to x_(sub3).

The greater number of photons reduces an amount of noise that adversely affects a calculation of an effective atomic number of substance 82. The greater number of photons facilitates reducing any increase in the noise due to variations in a spectrum of intensities of X-rays output by X-ray source 12, any non-uniformity in efficiency of detection of primary beams 83 and 84 and scattered rays 88, 89, 90, 91 by scatter detectors 16 and 18, and/or any variation in incident angles 96, 97, 98, and 105 (shown in FIG. 1). Moreover, the greater number of photons facilitates reducing false alarms in characterizing substance 82 and enhances a detection rate of characterizing substance 82. Moreover, the normalization of the diffraction profile D_(sub)(x) with the diffraction profile D_(calib)(x) or the normalization of the diffraction profile G_(sub)(x) with the diffraction profile G_(calib)(x) reduces the amount of noise.

Another technical effect includes using a plurality of values of the function L_(sub)(x) between the momentum transfer values x_(sub5) and x_(sub7) to determine the molecular interference function s_(sub)(x). The plurality of values of the function L_(sub)(x) represents a number of photons greater than a number of photons represented by values of the diffraction profile D_(sub)(x) between the ranges from and including x_(sub1) to x_(sub3) and facilitates generation of a better approximation of the molecular interference function s_(sub)(x) and than that generated by using the values of the diffraction profile D_(sub)(x). Substance 82 can be characterized more accurately based on the more accurate values of Z_(effsub) and s_(sub)(x). Yet another technical effect includes avoiding chances of calculating a logarithm of zero by determining whether at least one channel of the diffraction profile D_(sub)(x) has a zero count of photons as shown in FIG. 7. The function L_(sub)(x) is not defined if D_(sub)(x) is equal to zero.

Another technical effect of the herein described method, processor, and system includes identifying substance 82 based on the aquacity A_(sub). The identification based on the aquacity A_(sub) is faster than an identification of substance 82 based on other time-consuming methods. Moreover, the aquacity A_(sub) is a reliable parameter.

In addition, the aquacity A_(sub) is a parameter that can be used in conjunction with the molecular interference function s_(sub)(x) and the effective atomic number Z_(effsub)(x) to identify substance 82. Yet another technical effect includes determining the effective atomic number Z_(effsub)(x) and the molecular interference function s_(sub)(x) based on x_(lowlimit), which is the lower limit for fitting the straight line m₁x+c₁. As the lower limit x_(lowlimit) is extended, the noise decreases, and the accuracy of the values of Z_(effsub)(x) and s_(sub)(x) is increased.

Exemplary embodiments of a system, a processor, and a method for identifying a substance are described above in detail. The system, processor, and method are not limited to the specific embodiments described herein. For example, the method and the processor may be used in combination with other inspection/detection systems.

While various embodiments of the invention have been described, those skilled in the art will recognize that modifications of these various embodiments of the invention can be practiced within the spirit and scope of the claims. 

1. A method for identifying a substance, said method comprising: determining a parameter of a first diffraction profile of the substance; determining a parameter of a second diffraction profile of a known material; and comparing the parameter of the first diffraction profile and the parameter of the second diffraction profile to determine an aquacity of the substance.
 2. A method in accordance with claim 1, wherein determining a parameter of a second diffraction profile comprises scanning water to generate the second diffraction profile.
 3. A method in accordance with claim 1, further comprising integrating intensities over a first range of the first diffraction profile to produce a first integration.
 4. A method in accordance with claim 3, further comprising integrating intensities over a second range of the first diffraction profile to produce a second integration.
 5. A method in accordance with claim 4, wherein determining a parameter of a first diffraction profile of the substance comprises calculating a ratio of the first integration to the second integration as the parameter of the first diffraction profile.
 6. A method in accordance with claim 1, wherein determining a parameter of a second diffraction profile of a known material comprises: integrating intensities over a first range of the second diffraction profile to produce a first integration; and integrating intensities over a second range of the second diffraction profile to produce a second integration; and calculating a ratio of the first integration to the second integration as the parameter of the second diffraction profile.
 7. A method in accordance with claim 1, further comprising determining whether the substance is one of a solid and a liquid based on the aquacity and at least one threshold.
 8. A method in accordance with claim 1, further comprising determining a low limit for extending a line based on the aquacity.
 9. A processor for identifying a substance, said processor configured to: determine a parameter of a first diffraction profile of the substance; determine a parameter of a second diffraction profile of a known material; and compare the parameter of the first diffraction profile and the parameter of the second diffraction profile to determine an aquacity of the substance.
 10. A processor in accordance with claim 9, further configured to integrate intensities over a first range of the first diffraction profile to produce a first integration.
 11. A processor in accordance with claim 10, further configured to integrate intensities over a second range of the first diffraction profile to produce a second integration.
 12. A processor in accordance with claim 11, further configured to calculate a ratio of the first integration to the second integration as the parameter of the first diffraction profile.
 13. A processor in accordance with claim 9, further configured to: integrate intensities over a first range of the second diffraction profile to produce a first integration; integrate intensities over a second range of the second diffraction profile to produce a second integration; and calculate a ratio of the first integration to the second integration as the parameter of the second diffraction profile.
 14. A processor in accordance with claim 9, wherein said processor identifies the substance by determining whether the substance is one of a solid and a liquid based on the aquacity and at least one threshold.
 15. A processor in accordance with claim 9, further configured to determine a low limit for extending a line based on the aquacity.
 16. A system for identifying a substance, said system comprising: an X-ray source configured to generate X-rays; a detector configured to output a plurality of electrical signals upon detecting the X-rays; and a processor configured to: determine a parameter of a first diffraction profile of the substance based on the plurality of electrical signals; determine a parameter of a second diffraction profile of a known material based on the plurality of electrical signals; and compare the parameter of the first diffraction profile with the parameter of the second diffraction profile to determine an aquacity of the substance.
 17. A system in accordance with claim 16, wherein said processor is further configured to: integrate intensities over a first range of the first diffraction profile to produce a first integration; and integrate intensities over a second range of the first diffraction profile to produce a second integration.
 18. A system in accordance with claim 17, wherein said processor is further configured to calculate a ratio of the first integration to the second integration as the parameter of the first diffraction profile.
 19. A system in accordance with claim 16, wherein said processor is further configured to: integrate intensities over a first range of the second diffraction profile to produce a first integration; and integrate intensities over a second range of the second diffraction profile to produce a second integration; and calculate a ratio of the first integration to the second integration as the parameter of the second diffraction profile.
 20. A system in accordance with claim 16, wherein said processor is further configured to: compare the aquacity to a first threshold to determine if the substance is one of a liquid and a solid; and if the substance is determined to be the solid, compare the aquacity to a second threshold to determine if the substance is one of an amorphous solid and a crystalline solid. 